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Встречайте, ChatGPT - бот который может поддерживать беседу
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Кто-то понял что оно ответила?.. смущают знаки препинания..
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please remind me the name of the script that sets oracle environments variables on linux? env something.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
The script you're referring to is likely the `oraenv` or `coraenv` script on Linux systems that host Oracle databases.
When you install an Oracle Database, these scripts are typically provided to help set the necessary environment variables for the Oracle user. By running `. oraenv` (for individual user shells) or `sudo coraenv` (for system-wide configuration in some cases) and specifying the desired ORACLE_SID, the script sets the environment variables such as ORACLE_HOME, ORACLE_SID, LD_LIBRARY_PATH, and PATH that are needed to interact with the Oracle database installation.
To use it, you would source it in your shell:
```bash
. oraenv
```
Or for the C shell:
```csh
source coraenv
```
Remember the dot (.) before the oraenv command, which means "source" in bash shell, and it's responsible for executing the script within the current shell context, not spawning a subshell. This is important because you want the environment variables to be set in the current shell session.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Could you write me a Python code to predict stock market trends?
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Predicting stock market trends is a complex and uncertain task, and it should be noted that no model can guarantee accurate predictions due to the volatile and unpredictable nature of financial markets. However, I can show you an example of how one might approach building a simple machine learning model for stock price prediction using historical price data.
This example will use Python's `pandas` library for data manipulation, `matplotlib` for plotting, and `scikit-learn` for creating a prediction model:
```python
import pandas as pd
import numpy as np
from sklearn.model_selection import train_test_split
from sklearn.linear_model import LinearRegression
from sklearn.metrics import mean_squared_error
import matplotlib.pyplot as plt
# Let's assume you have historical stock data in CSV format with 'Date' and 'Close' columns.
# Replace 'path_to_csv_file.csv' with the path to your CSV file.
df = pd.read_csv('path_to_csv_file.csv')
# Convert the date to datetime and sort the DataFrame by date
df['Date'] = pd.to_datetime(df['Date'])
df.sort_values('Date', inplace=True)
# Use the closing price as the feature to predict future prices
X = df.index.values.reshape(-1, 1) # Use index as a feature for simplicity
y = df['Close'].values
# Split the dataset into training and testing sets
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
# Create and train the linear regression model
model = LinearRegression()
model.fit(X_train, y_train)
# Make predictions
y_pred = model.predict(X_test)
# Calculate the mean squared error (MSE)
mse = mean_squared_error(y_test, y_pred)
print(f"Mean Squared Error: {mse}")
# Plot the results
plt.figure(figsize=(14, 7))
plt.scatter(X_test, y_test, color='black', label='Actual Prices')
plt.plot(X_test, y_pred, color='blue', linewidth=3, label='Predicted Prices')
plt.xlabel('Date Index')
plt.ylabel('Stock Price')
plt.title('Stock Price Prediction')
plt.legend()
plt.show()
```
Please make sure you have installed the necessary packages before running the code:
```bash
pip install pandas matplotlib scikit-learn
```
Remember that this example uses a very simplistic model (linear regression), which is unlikely to provide accurate stock market predictions. In reality, stock prices are influenced by many factors, including economic indicators, company performance, political events, market sentiment, and more.
For a more realistic approach, consider exploring more complex models like ARIMA, LSTM (Long Short-Term Memory networks), or other deep learning techniques, and use a wider range of features, including technical indicators and potentially alternative data sources. Additionally, always be aware of the risks and uncertainties associated with stock market prediction when applying these models in real-world scenarios.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Can you give me an example using LSTM?
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Beginning of a conversation containing 4 posts (1571 tokens of 8192 were used)
This example uses historical stock data, and you will need to preprocess the data into sequences suitable for training an LSTM network.
Please install the necessary libraries before running the code:
```bash
pip install numpy pandas matplotlib tensorflow scikit-learn
```
Here's the LSTM example code:
```python
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
from sklearn.preprocessing import MinMaxScaler
from sklearn.metrics import mean_squared_error
from tensorflow.keras.models import Sequential
from tensorflow.keras.layers import Dense, LSTM
from tensorflow.keras.callbacks import EarlyStopping
# Load the dataset
# Replace 'path_to_csv_file.csv' with your CSV file path
df = pd.read_csv('path_to_csv_file.csv', parse_dates=['Date'], index_col='Date')
# Use only the 'Close' column for prediction
data = df.filter(['Close'])
# Convert the dataframe to a numpy array and scale the data
scaler = MinMaxScaler(feature_range=(0, 1))
scaled_data = scaler.fit_transform(data.values)
# Define the sequence length (number of previous time steps to use as input variables)
sequence_length = 60
# Create the training dataset
train_data_len = int(len(scaled_data) * 0.
train_data = scaled_data[:train_data_len]
x_train, y_train = [], []
for i in range(sequence_length, len(train_data)):
x_train.append(train_data[i-sequence_length:i])
y_train.append(train_data)
x_train, y_train = np.array(x_train), np.array(y_train)
# Build the LSTM model
model = Sequential()
model.add(LSTM(units=50, return_sequences=True, input_shape=(x_train.shape[1], 1)))
model.add(LSTM(units=50, return_sequences=False))
model.add(Dense(units=25))
model.add(Dense(units=1))
# Compile the model
model.compile(optimizer='adam', loss='mean_squared_error')
# Train the model
early_stopping = EarlyStopping(monitor='val_loss', patience=2, restore_best_weights=True)
history = model.fit(x_train, y_train, batch_size=32, epochs=20, validation_split=0.1, callbacks=[early_stopping], shuffle=False)
# Create the test dataset
test_data = scaled_data[train_data_len - sequence_length:]
x_test, y_test = [], data['Close'][train_data_len:]
for i in range(sequence_length, len(test_data)):
x_test.append(test_data[i-sequence_length:i])
x_test = np.array(x_test)
# Get the models predicted price values
predictions = model.predict(x_test)
predictions = scaler.inverse_transform(predictions)
# Calculate the root mean squared error
rmse = np.sqrt(mean_squared_error(y_test.values, predictions[:, 0]))
# Plot the results
plt.figure(figsize=(12, 6))
train = data[:train_data_len]
valid = data[train_data_len:]
valid['Predictions'] = predictions[:, 0]
plt.title('Model')
plt.xlabel('Date')
plt.ylabel('Close Price USD ($)')
plt.plot(train['Close'])
plt.plot(valid[['Close', 'Predictions']])
plt.legend(['Train', 'Val', 'Predictions'], loc='lower right')
plt.show()
```
Notes:
- Replace `'path_to_csv_file.csv'` with the actual path to your CSV file containing the stock price data.
- TensorFlow and Keras are used here to create the LSTM model.
- The `MinMaxScaler` normalizes the price data between 0 and 1.
- We used a sequence length of 60 days to predict future stock prices, but you can tune this parameter.
- `EarlyStopping` is implemented to stop training when the validation loss stops improving to prevent overfitting.
- The `predict` method generates predicted normalized prices, which are then inverted to obtain the actual price predictions.
- Root Mean Square Error (RMSE) is calculated to evaluate the model's predictions.
Remember, this is still a very basic example and the performance of LSTM models depends heavily on the quality and quantity of the historical data, careful feature engineering, hyperparameter tuning, and sometimes even on incorporating external information that could affect stock prices. Moreover, stock market prediction is inherently uncertain and should be treated with caution.
Certainly! Using Long Short-Term Memory (LSTM) networks to predict stock market trends is a more complex and advanced approach compared to linear regression. Below is a sample Python code that demonstrates how to create a simple LSTM model using TensorFlow and Keras for stock price prediction.
This example uses historical stock data, and you will need to preprocess the data into sequences suitable for training an LSTM network.
Please install the necessary libraries before running the code:
```bash
pip install numpy pandas matplotlib tensorflow scikit-learn
```
Here's the LSTM example code:
```python
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
from sklearn.preprocessing import MinMaxScaler
from sklearn.metrics import mean_squared_error
from tensorflow.keras.models import Sequential
from tensorflow.keras.layers import Dense, LSTM
from tensorflow.keras.callbacks import EarlyStopping
# Load the dataset
# Replace 'path_to_csv_file.csv' with your CSV file path
df = pd.read_csv('path_to_csv_file.csv', parse_dates=['Date'], index_col='Date')
# Use only the 'Close' column for prediction
data = df.filter(['Close'])
# Convert the dataframe to a numpy array and scale the data
scaler = MinMaxScaler(feature_range=(0, 1))
scaled_data = scaler.fit_transform(data.values)
# Define the sequence length (number of previous time steps to use as input variables)
sequence_length = 60
# Create the training dataset
train_data_len = int(len(scaled_data) * 0.
train_data = scaled_data[:train_data_len]
x_train, y_train = [], []
for i in range(sequence_length, len(train_data)):
x_train.append(train_data[i-sequence_length:i])
y_train.append(train_data)
x_train, y_train = np.array(x_train), np.array(y_train)
# Build the LSTM model
model = Sequential()
model.add(LSTM(units=50, return_sequences=True, input_shape=(x_train.shape[1], 1)))
model.add(LSTM(units=50, return_sequences=False))
model.add(Dense(units=25))
model.add(Dense(units=1))
# Compile the model
model.compile(optimizer='adam', loss='mean_squared_error')
# Train the model
early_stopping = EarlyStopping(monitor='val_loss', patience=2, restore_best_weights=True)
history = model.fit(x_train, y_train, batch_size=32, epochs=20, validation_split=0.1, callbacks=[early_stopping], shuffle=False)
# Create the test dataset
test_data = scaled_data[train_data_len - sequence_length:]
x_test, y_test = [], data['Close'][train_data_len:]
for i in range(sequence_length, len(test_data)):
x_test.append(test_data[i-sequence_length:i])
x_test = np.array(x_test)
# Get the models predicted price values
predictions = model.predict(x_test)
predictions = scaler.inverse_transform(predictions)
# Calculate the root mean squared error
rmse = np.sqrt(mean_squared_error(y_test.values, predictions[:, 0]))
# Plot the results
plt.figure(figsize=(12, 6))
train = data[:train_data_len]
valid = data[train_data_len:]
valid['Predictions'] = predictions[:, 0]
plt.title('Model')
plt.xlabel('Date')
plt.ylabel('Close Price USD ($)')
plt.plot(train['Close'])
plt.plot(valid[['Close', 'Predictions']])
plt.legend(['Train', 'Val', 'Predictions'], loc='lower right')
plt.show()
```
Notes:
- Replace `'path_to_csv_file.csv'` with the actual path to your CSV file containing the stock price data.
- TensorFlow and Keras are used here to create the LSTM model.
- The `MinMaxScaler` normalizes the price data between 0 and 1.
- We used a sequence length of 60 days to predict future stock prices, but you can tune this parameter.
- `EarlyStopping` is implemented to stop training when the validation loss stops improving to prevent overfitting.
- The `predict` method generates predicted normalized prices, which are then inverted to obtain the actual price predictions.
- Root Mean Square Error (RMSE) is calculated to evaluate the model's predictions.
Remember, this is still a very basic example and the performance of LSTM models depends heavily on the quality and quantity of the historical data, careful feature engineering, hyperparameter tuning, and sometimes even on incorporating external information that could affect stock prices. Moreover, stock market prediction is inherently uncertain and should be treated with caution.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please explain this Python syntax:
valid['Predictions'] = predictions[:, 0]
valid['Predictions'] = predictions[:, 0]
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
The given syntax is used in the context of Python, specifically with data manipulation libraries such as pandas. Here's a breakdown of the different parts:
1. `valid`: This is likely a pandas DataFrame. A DataFrame is a 2-dimensional labeled data structure with columns of potentially different types.
2. `valid['Predictions']`: This represents a new or existing column in the `valid` DataFrame. By using square brackets and a string literal, you can access (or create) a column in the DataFrame. In this case, the column being referenced is 'Predictions'. If the 'Predictions' column doesn't already exist in the DataFrame, it will be created.
3. `predictions[:, 0]`: This piece of syntax is typical for NumPy arrays or pandas DataFrames/DataSeries, and it refers to slicing. Let's break this down:
- `predictions`: This is likely a 2-dimensional NumPy array or a DataFrame. NumPy is a library for numerical computing in Python that provides support for large, multi-dimensional arrays and matrices.
- `[:, 0]`: This is a slicing operation. In NumPy:
- The colon `:` indicates selecting all rows in the array.
- The `0` after the comma indicates selecting the first column of the array.
So `predictions[:, 0]` will effectively select all rows from the first column of the `predictions` array.
Putting it all together:
``` python
valid['Predictions'] = predictions[:, 0]
```
With this line of code, we're taking the first column of the `predictions` array and assigning it to the 'Predictions' column of the `valid` DataFrame. This is a common operation when you've generated predictions from a model and you want to add them to your original dataset for comparison or further analysis.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please help with creating a funny award for Engineering manager, woman, Indian, who likes to micromanage, single, likes to travel, in her 40-s. Not offensive
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Creating a humorous and respectful award for your engineering manager can be a fun way to show appreciation. Here's an idea that plays off her traits without being offensive:ЖестДобройМоли писал(а): ↑Please help with creating a funny award for Engineering manager, woman, Indian, who likes to micromanage, single, likes to travel, in her 40-s. Not offensive
Award Title: "The Globetrotting Perfectionist Prodigy Award"
Award Description:
"Presented to [Manager's Name], the unparalleled maestro of meticulousness, whose extraordinary talent for 'detail-oriented guidance' keeps every gear in our engineering machine operating with the precision of a Swiss watch.
May your passion for micromanagement only be rivaled by your love for passport stamps and boarding passes. With each project you finesse to perfection, we imagine you mentally ticking off another wondrous destination on your solo world tour – a journey not just across continents, but also through the intricacies of engineering marvels.
As a visionary leader who orchestrates our workflows with the same enthusiasm as planning your next exotic getaway, you inspire us to reach new heights (both figuratively and literally). We applaud your unique ability to keep our projects as organized as your immaculate travel itineraries and as successful as your solo adventures.
With admiration and a touch of wanderlust, we confer upon you this award, celebrating your singular blend of focus, foresight, and fondness for frequent flyer miles."
Include a physical token with the award, such as a small globe or airplane statuette, to signify her love for travel, with a humorous touch like a tiny magnifying glass or planner to represent her micromanaging skills.
Remember to ensure that any humor used is appropriate for your workplace environment and that your manager would receive it in the good-natured spirit intended.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please help with creating a funny award for Engineering manager, woman, Indian, who likes to micromanage, likes to travel, in her 40-s, her engineering team name is called OwlStars
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Award Title: "The Grand Overseer of the OwlStars' Odyssey"ЖестДобройМоли писал(а): ↑Please help with creating a funny award for Engineering manager, woman, Indian, who likes to micromanage, likes to travel, in her 40-s, her engineering team name is called OwlStars
Subtitle: "Master of Micromanagement and Mistress of Mileage"
Description of the award:
Presented to The Exceptional [Manager's Name], whose eyes are as keen as the nocturnal guardians of our team name, the OwlStars. With a vision that pierces through the veil of incomplete TPS reports and a focus sharper than the edge of Occam's Razor on an engineering problem, [Manager's Name] has elevated the fine art of micromanagement to celestial heights.
Her passport is as stamped as her approval on every minute project detail, and her team's itinerary is as meticulously planned as her next globe-trotting adventure. From the vast conference rooms to the sprawling exotic lands, she leaves no stone unturned and no local cuisine untasted. In her 40-splendid-years, she has not only collected souvenirs but also triumphs in leadership and project management.
May this whimsical award remind you of your undying dedication to your team and your insatiable wanderlust. May it inspire chuckles and brighten days as brilliantly as your engineering solutions light up our world. May your leadership continue to guide the OwlStars on a journey of precision, excellence, and occasional unscheduled layovers in the realm of innovation.
Your OwlStars salute you, [Manager's Name], as we present you with this symbol of our admiration and slight fear of your ever-watchful gaze. We are not just your team; we are your travel companions through the odyssey of engineering marvels!
Here's to many more successful projects and passport stamps, O Great Overseer of the OwlStars' Odyssey!
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please create a funny award for the Engineering manager, who used to be front end developer. He's in his 50-s, has two twin kids. He recently worked in upgrading CKeditor long text editor. And his name is Ed
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Award Title: "The Golden WYSIWYG Trophy for Typographic Engineering Excellence"ЖестДобройМоли писал(а): ↑Please create a funny award for the Engineering manager, who used to be front end developer. He's in his 50-s, has two twin kids. He recently worked in upgrading CKeditor long text editor. And his name is Ed
Presented to: Ed, the Alchemist of Algorithms
In recognition of his heroic efforts in transmuting the base metals of code into the golden threads that run through the tapestry of our CKeditor, we hereby bestow upon Ed the most prestigious and slightly whimsical honor known to the realms of Engineering and Front End Development.
Whereas most would see a long text editor as a mere tool for typing, Ed saw a labyrinth of opportunity, a canvas for digital expression, and a playground for his twin magicians-in-training to one day explore.
For his valiant endeavor to upgrade what is already an arcane artifact of textual manipulation, for his ability to wrangle cascading style sheets without wrinkling his own, and for his unfailing dedication to the cause despite the perils of parenting twin bundles of kinetic energy, we salute you.
Ed, you are not just a manager; you are the supreme guardian of the gateway between human thought and digital permanence. With the power vested in syntax and semicolons, may you continue to lead your team with the precision of a compiler and the warmth of a well-loved laptop.
Therefore, let it be known that Ed, the Enchanter of Elements (HTML, CSS, and JS), shall henceforth bear the title of "Supreme Scribe of Systematic Scribbles" and wield the Golden WYSIWYG Trophy as a beacon of hope for all those who toil in the tangled webs we weave online.
Congratulations, and may your editor never encounter an unexpected token.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please help with creating a funny award for Engineering manager who used to be a Testing team manager and now works with Engineering accessibility team called Megahuman
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Certainly! Here's a playful award idea that plays on your manager's transition from Testing to Engineering and their current role related to accessibility in the Megahuman team:ЖестДобройМоли писал(а): ↑Please help with creating a funny award for Engineering manager who used to be a Testing team manager and now works with Engineering accessibility team called Megahuman
Award Title: "The Supreme Migrate-and-Elevate Engineer of the Year"
Award Description:
In recognition of [Manager's Name], the fearless leader who once orchestrated symphonies of tests and validations, and now champions the noble cause of making the digital world accessible to all. With a keyboard as their wand and a keen eye for inclusivity, they have transcended the mere mortal realm of bug-busting to become a beacon of empowerment in the Megahuman league.
This award honors your unparalleled ability to leap across departmental divides in a single bound and elevate our products to Olympian heights of accessibility. May your unwavering commitment to creating a tech utopia where everyone has a front-row seat remind us all that behind every great code, there is an even greater human touch.
As the Supreme Migrate-and-Elevate Engineer, you are not only a master of seamless transitions but also the epitome of adaptability - transforming user experiences from the mundane to the magnificent!
[Catchphrase/Slogan]: "Where there's a will to engineer, there's a way to include!"
[Optional: Include a trophy or plaque with a superhero theme, such as a figurine that merges elements of a tester (perhaps holding a magnifying glass or a bug net) and an engineer (with a blueprint or gear), wearing a cape emblazoned with the Megahuman logo.]
Note: Always make sure your humor aligns with the recipient's personality and company culture to ensure it is well-received.
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
@ChatGPT Please help with creating a funny award for Engineering manager who used to be a Testing team manager and now works with team called Mega Human. That team works on accessibility features. Please have Mega Human" somewhere in awards name
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- ChatGPT
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Re: Встречайте, ChatGPT - бот который может поддерживать беседу
Award Title: "The Mega Human Transformation Maestro Award"ЖестДобройМоли писал(а): ↑Please help with creating a funny award for Engineering manager who used to be a Testing team manager and now works with team called Mega Human. That team works on accessibility features. Please have Mega Human" somewhere in awards name
Subtitle: "From Bug Basher to Accessibility Ambassador"
Description:
In recognition of your extraordinary journey from the Testing team trenches to leading the Mega Human league, we hereby confer upon you the "Mega Human Transformation Maestro Award." With your uncanny ability to spot the tiniest glitch and your superhuman efforts to make technology accessible for all, you've proven that change is not only inevitable but can be downright heroic.
Your leadership now ensures that when it comes to accessibility, no feature goes unturned, and your legacy as a former Testing Manager is forever etched in the annals of bug-free, user-friendly history. May your cape never snag on a regression test, and may your code always compile with inclusivity.
Congratulations on becoming the beacon of change for the betterment of humans and machines alike!
Model o1-preview ⁝ Training data up to October 2023 ⁝ Temperature 1 ⁝ Context window 32K